Rotation-Invariant Point Convolution With Multiple Equivariant Alignments.

Hugues Thomas
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引用次数: 9

Abstract

Recent attempts at introducing rotation invariance or equivariance in 3D deep learning approaches have shown promising results, but these methods still struggle to reach the performances of standard 3D neural networks. In this work we study the relation between equivariance and invariance in 3D point convolutions. We show that using rotation-equivariant alignments, it is possible to make any convolutional layer rotation-invariant. Furthermore, we improve this simple alignment procedure by using the alignment themselves as features in the convolution, and by combining multiple alignments together. With this core layer, we design rotation-invariant architectures which improve state-of-the-art results in both object classification and semantic segmentation and reduces the gap between rotation-invariant and standard 3D deep learning approaches.
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具有多个等变对齐的旋转不变点卷积。
最近在3D深度学习方法中引入旋转不变性或等变性的尝试已经显示出有希望的结果,但这些方法仍然难以达到标准3D神经网络的性能。本文研究了三维点卷积的等变性和不变性之间的关系。我们证明了使用旋转等变对齐,可以使任何卷积层旋转不变。此外,我们通过使用对齐本身作为卷积中的特征,并将多个对齐组合在一起,改进了这个简单的对齐过程。通过这个核心层,我们设计了旋转不变架构,提高了对象分类和语义分割的最新结果,并减少了旋转不变和标准3D深度学习方法之间的差距。
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